Pricing Analyst General Insurance

South Croydon
11 months ago
Applications closed

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Pricing Analyst - General Insurance | Multiple Opportunities
Salary: Competitive + Bonus
Hybrid

Are you a Pricing Analyst with a General Insurance (GI) background looking to take the next step in your career? A leading insurance provider is expanding its pricing team and is seeking talented analysts with experience in motor, home, pet, or other personal/commercial lines.
Key Responsibilities:

Develop and enhance pricing models using statistical techniques.
Work with large datasets to drive data-driven decision-making.
Utilise tools like Python, R, SQL, and machine learning (desirable).
Collaborate with underwriters, actuaries, and data scientists to refine pricing strategies.
Monitor and optimise pricing performance in a competitive market.What We're Looking For:

Experience in general insurance pricing (motor, home, travel, pet, or commercial lines).
Strong analytical and problem-solving skills with a mathematical mindset.
Technical expertise in Python, R, SQL, or Emblem (desirable but not essential).
Understanding of statistical modelling techniques such as GLMs, machine learning, or predictive analytics.
2:1 or above in a mathematics, statistics, actuarial science, or related field.Why Apply?

Work in a dynamic and growing pricing team.
Exposure to cutting-edge pricing techniques and machine learning.
Hybrid working - roles based in South London with flexible homeworking
Opportunities for career progression and professional development.
Apply now or reach out for a confidential chat

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